一种计算FCM回归样本权值的新方法

Yan Zhu, Jian Yu
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引用次数: 0

摘要

回归是建立变量间模型的重要预测方法。原始回归算法忽略样本权值,认为所有样本在回归中的作用是相等的。但是这种算法在处理异常点时往往会失效,因为异常点对回归模型的干扰很大。对于传统的切换回归,当样本权值相等时,样本隶属度随模型而变化。本文提出了一种同时计算样本隶属度和样本权重的FCM回归自适应加权方法。这种方法可以使离群样本的权重尽可能小。数值实验表明,该方法是有效的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Novel Method to Calculate Sample Weights for FCM Regression
Regression is an important prediction method to establish models between variables. The primitive regression algorithms ignore the sample weights, and consider all samples play an equal role in regression. But this kind of algorithms often loses efficacy when dealing with outliers, since outliers disturb the regression models greatly. For traditional switching regression, sample membership varies with models when sample weights are equal. In this paper, we propose an adaptive sample weighting method for FCM regression, in which sample membership and sample weights are computed simultaneously. Such method can make outlier sample weights as small as possible. Numerical experiments suggest that our approach is effective.
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